首页> 外文期刊>Journal of the Indian Society of Remote Sensing >Artificial Neural Network (ANN) Based Inversion of Benthic Substrate Bottom Type and Bathymetry in Optically Shallow Waters - Initial Model Results
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Artificial Neural Network (ANN) Based Inversion of Benthic Substrate Bottom Type and Bathymetry in Optically Shallow Waters - Initial Model Results

机译:基于人工神经网络(ANN)的浅海底栖底物底面类型和测深法的反演-初始模型结果

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Ocean-colour remote sensing in optically shallow waters is influenced by contribution from the water column depth as well as by the substrate type. Therefore, it is required to include the contribution from the water column and substrate bottom type for bathymetry estimation. In this report we demonstrate the use of Artificial Neural Network (ANN) based approach to spectrally distinguish various benthic bottom types and estimate depth of substrate bottom simultaneously in optically shallow waters. We have used in-water radiative transfer simulation modeling to generate simulated top-of-the-water column reflectance the four major benthic bottom types viz. sea grass, coral sand, green algae and red algae using Hydrolight simulation model. The simulated remote sensing reflectance, for the four benthic bottom types having benthic bottom depth up to 30 m were generated for moderately clear waters. A multi-layer perceptron (MLP) type neural network was trained using the simulated data. ANN based approach was used for classification of the benthic bottom type and simultaneous inversion of bathymetry. Simulated data was inverted to yield benthic bottom type classification with an accuracy of ~98% for the four benthic substrate types and the substrate depth were estimated with an error of 0% for sea grass, 1% for coral sand and 1–3% for green and red algae up to 25 m, whereas for substrate bottom deeper than 25 m depth the classification errors increased by 2–5% for three substrate bottom types except sea grass bottom type. The initial results are promising which needs validation using the in-situ measured remote sensing reflectance spectra for implementing further on satellite data.
机译:浅水海域的海洋遥感受到水柱深度和基质类型的影响。因此,需要将水柱和基板底部类型的贡献包括在内,以进行测深法估算。在本报告中,我们演示了基于人工神经网络(ANN)的方法在光谱上区分各种底栖底物类型并在光学浅水区同时估计底物底物深度的情况。我们已经使用了水中辐射传递模拟模型来生成四种主要底栖底部类型的模拟水顶柱反射率。使用Hydrolight仿真模型分析海草,珊瑚砂,绿藻和红藻。对于中度清澈的海水,生成了四种底底深度达30 m的底底类型的模拟遥感反射率。使用模拟数据训练了多层感知器(MLP)型神经网络。基于人工神经网络的方法用于对底栖海底类型进行分类并同时进行测深法的反演。对四种底栖基质类型的模拟数据进行倒置,得出底栖底部类型分类,精度为〜98%,估计的基质深度对海草的误差为0%,对珊瑚砂的误差为1%,对于底砂的误差为1-3%绿藻和红藻达25 m,而对于底物深于25 m的海底,除海草底物类型外,三种底物类型的分类误差增加了2–5%。初步结果令人鼓舞,需要使用实地测得的遥感反射光谱进行验证,以进一步在卫星数据上实施。

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